---
redirect_from:
  - /data-blending
  - /recipes/data-blending
  - /schema/advanced/data-blending
---

# Data blending

In case you want to plot two measures from different cubes on a single chart, or
create a calculated measure based on it, you need to create a join between these
two cubes. If there's no way to join two cubes other than by time dimension, you
can consider using the data blending approach.

Data blending is a pattern that allows creating a cube based on two or more
existing cubes, and contains a union of the underlying cubes' date to query it
together.

Data blending could be faster than joining on date when the record count is very large, 
because with this pattern, aggregation happens before joining, which can be more 
efficient for large volumes of data.
The other situation in which data blending could be a better approach than joining 
on date is when the two tables have mostly the same columns, such as in the example below.

For an example, consider an omnichannel store which has both online and offline sales. Let's
calculate summary metrics for revenue, customer count, etc. We have a
`retail_orders` cube for offline sales:

<CodeTabs>

```yaml
cubes:
  - name: retail_orders
    sql_table: retail_orders

    measures:
      - name: customer_count
        sql: customer_id
        type: count_distinct

      - name: revenue
        sql: amount
        type: sum

    dimensions:
      - name: created_at
        sql: created_at
        type: time
```

```javascript
cube(`retail_orders`, {
  sql_table: `retail_orders`,

  measures: {
    customer_count: {
      sql: `customer_id`,
      type: `count_distinct`,
    },

    revenue: {
      sql: `amount`,
      type: `sum`,
    },
  },

  dimensions: {
    created_at: {
      sql: `created_at`,
      type: `time`,
    },
  },
});
```

</CodeTabs>

An `online_orders` cube for online sales:

<CodeTabs>

```yaml
cubes:
  - name: online_orders
    sql_table: online_orders

    measures:
      - name: customer_count
        sql: user_id
        type: count_distinct

      - name: revenue
        sql: amount
        type: sum

    dimensions:
      - name: created_at
        sql: created_at
        type: time
```

```javascript
cube(`online_orders`, {
  sql_table: `online_orders`,

  measures: {
    customer_count: {
      sql: `user_id`,
      type: `count_distinct`,
    },

    revenue: {
      sql: `amount`,
      type: `sum`,
    },
  },

  dimensions: {
    created_at: {
      sql: `created_at`,
      type: `time`,
    },
  },
});
```

</CodeTabs>

Given the above cubes, a data blending cube can be introduced as follows:

```javascript
cube(`all_sales`, {
  sql: `
    SELECT
      amount,
      user_id AS customer_id,
      created_at,
      'online' AS row_type
    FROM (${online_orders.sql()}) AS online
    UNION ALL
    SELECT
      amount,
      customer_id,
      created_at,
      'retail' AS row_type
    FROM (${retail_orders.sql()}) AS retail
 `,

  measures: {
    customer_count: {
      sql: `customer_id`,
      type: `count_distinct`,
    },

    revenue: {
      sql: `amount`,
      type: `sum`,
    },

    online_revenue: {
      sql: `amount`,
      type: `sum`,
      filters: [{ sql: `${CUBE}.row_type = 'online'` }],
    },

    offline_revenue: {
      sql: `amount`,
      type: `sum`,
      filters: [{ sql: `${CUBE}.row_type = 'retail'` }],
    },

    online_revenue_percentage: {
      sql: `
        ${online_revenue} /
        NULLIF(${online_revenue} + ${offline_revenue}, 0)
      `,
      type: `number`,
      format: `percent`,
    },
  },

  dimensions: {
    created_at: {
      sql: `created_at`,
      type: `time`,
    },

    revenue_type: {
      sql: `row_type`,
      type: `string`,
    },
  },
});
```

Another use case of the Data Blending approach would be when you want to chart
some measures (business related) together and see how they correlate.

Provided we have the aforementioned tables `online_orders` and `retail_orders`
let's assume that we want to chart those measures together and see how they
correlate. You can simply pass the queries to the Cube client, and it will merge
the results which will let you easily display it on the chart.

```javascript
import cube from "@cubejs-client/core";

const API_URL = "http://localhost:4000";
const CUBE_TOKEN = "YOUR_TOKEN";

const cubeApi = cube(CUBE_TOKEN, {
  apiUrl: `${API_URL}/cubejs-api/v1`,
});

const queries = [
  {
    measures: ["online_orders.revenue"],
    timeDimensions: [
      {
        dimension: "online_orders.created_at",
        granularity: "day",
        dateRange: ["2020-08-01", "2020-08-07"],
      },
    ],
  },
  {
    measures: ["retail_orders.revenue"],
    timeDimensions: [
      {
        dimension: "retail_orders.created_at",
        granularity: "day",
        dateRange: ["2020-08-01", "2020-08-07"],
      },
    ],
  },
];

const resultSet = await cubeApi.load(queries);
```
